Machine Learning in Earth Observation: examples from the daily work at the Institute for Earth Observation
De Gregorio L
MetadataShow full item record
At: Davinci: Know How Transfer Event Artificial Intelligence/Machine Learning 4th Meeting ; Bolzano/Bozen ; 03/09/2019 ; In the Institute for Earth Observation of Eurac Research, the key mission is the monitoring of environmental parameters in mountain regions. Relying heavily on remotely sensed data from various satellite missions, machine learning is an essential technique applied for extracting information on those environmental processes from the big data streams. Classification of land cover, automatic detection of clouds and the determination of outlines of glaciers are some of the fields where machine learning is applied. During the presentation an overview will be given on which machine learning techniques are currently applied, for which fields of application and how they are trained. https://www.eventa.it/eventi/bolzano/know-how-transfer-event-artificial-intelligence-machine-learning-4th-meeting
Showing items related by title, author, creator and subject.
Fasolo A; Alberti L; Bianchi N (2014)Switching-flux permanent magnet (PM) machines compared with interior PM machines are presented to be interesting solutions in terms of torque per volume density, compactness, active material layout, and cooling capability. ...
O’Connor B; Secades C; Penner J; Sonnenschein R; Skidmore A; Burgess N D; Hutton JM (2015)Biodiversity is continuing to decline. This crisis has been recognised by the Convention on Biological Diversity (CBD), whose members have set ambitious targets to avert ongoing declines in the state of biodiversity by ...
Relationship between Spatiotemporal Variations of Climate, Snow Cover and Plant Phenology over the Alps: An Earth Observation-Based Analysis Asam S; Callegari M; Matiu M; Fiore G; De Gregorio L; Jacob A; Menzel A; Zebisch M; Notarnicola C (2018)Alpine ecosystems are particularly sensitive to climate change, and therefore it is of significant interest to understand the relationships between phenology and its seasonal drivers in mountain areas. However, no alpine-wide ...